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A Personalized Low-Rank Subspace Clustering Method Based on Locality and Similarity Constraints for scRNA-seq Data Analysis

  • Tian Jing Qiao
  • , Jin Xing Liu
  • , Junliang Shang
  • , Shasha Yuan
  • , Chun Hou Zheng
  • , Juan Wang
  • Qufu Normal University

Research output: Contribution to journalArticlepeer-review

10 Scopus citations

Abstract

Single-cell RNA sequencing (scRNA-seq) technology can provide expression profile of single cells, which propels biological research into a new chapter. Clustering individual cells based on their transcriptome is a critical objective of scRNA-seq data analysis. However, the high-dimensional, sparse and noisy nature of scRNA-seq data pose a challenge to single-cell clustering. Therefore, it is urgent to develop a clustering method targeting scRNA-seq data characteristics. Due to its powerful subspace learning capability and robustness to noise, the subspace segmentation method based on low-rank representation (LRR) is broadly used in clustering researches and achieves satisfactory results. In view of this, we propose a personalized low-rank subspace clustering method, namely PLRLS, to learn more accurate subspace structures from both global and local perspectives. Specifically, we first introduce the local structure constraint to capture the local structure information of the data, while helping our method to obtain better inter-cluster separability and intra-cluster compactness. Then, in order to retain the important similarity information that is ignored by the LRR model, we utilize the fractional function to extract similarity information between cells, and introduce this information as the similarity constraint into the LRR framework. The fractional function is an efficient similarity measure designed for scRNA-seq data, which has theoretical and practical implications. In the end, based on the LRR matrix learned from PLRLS, we perform downstream analyses on real scRNA-seq datasets, including spectral clustering, visualization and marker gene identification. Comparative experiments show that the proposed method achieves superior clustering accuracy and robustness.

Original languageEnglish
Pages (from-to)2575-2584
Number of pages10
JournalIEEE Journal of Biomedical and Health Informatics
Volume27
Issue number5
DOIs
StatePublished - 1 May 2023
Externally publishedYes

Keywords

  • Clustering
  • local structure constraint
  • low-rank representation
  • scRNA-seq
  • similarity constraint

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